skrl: Modular and Flexible Library for Reinforcement Learning
- Antonio Serrano-Muñoz 1
- Dimitrios Chrysostomou 2
- Simon Bøgh 2
- Nestor Arana-Arexolaleiba 12
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1
Universidad de Mondragón/Mondragon Unibertsitatea
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2
Aalborg University
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ISSN: 1532-4435
Année de publication: 2022
Volumen: 23
Type: Article
D'autres publications dans: Journal of Machine Learning Research
Résumé
skrl is an open-source modular library for reinforcement learning written in Python and designed with a focus on readability, simplicity, and transparency of algorithm implementations. In addition to supporting environments that use the traditional interfaces from OpenAI Gym / Farama Gymnasium, DeepMind and others, it provides the facility to load, configure, and operate NVIDIA Isaac Gym, Isaac Orbit, and OmniverseIsaac Gym environments. Furthermore, it enables the simultaneous training of several agents with customizable scopes (subsets of environments among all available ones), which may or may not share resources, in the same run. The library’s documentation can befound at https://skrl.readthedocs.io and its source code is available on GitHub athttps://github.com/Toni-SM/skrl
Information sur le financement
We would like to express our gratitude for the funding and support received from NVIDIA under a collaboration agreement with the Mondragon Unibertsitatea.Références bibliographiques
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